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Forestry Research and Engineering: International Journal

Research Article Volume 2 Issue 6

Influence of soil erosion and conservation practices on soil physical properties in Ginaberet, Ethiopia

Girma Taddese,1 Yishak Yiferu,2 Tesfaye Mebrate2

1Raya University, Ethiopia
2AgriCollege/Plant Science Department, Debre Birhan University, Ethiopia

Correspondence: Girma Taddese, Agri College/Plant Science Department, Debre Birhan University, P.O. Box 445, Debre Birhan, Ethiopia, Tel 2519 1140 6188

Received: July 25, 2018 | Published: November 9, 2018

Citation: Yiferu Y, Taddese G, Mebrate T. Influence of soil erosion and conservation practices on soil physical properties in Ginaberet, Ethiopia. Forest Res Eng Int J. 2018;2(6):288-297. DOI: 10.15406/freij.2018.02.00062

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Abstract

Soil erosion is one of the major factors leading to land degradation that affect the sustainability of agricultural production in Ethiopia. It resulted in severe soil fertility and agricultural production decline. In the past, it was time and financial resource consuming to predict soil erosion. At present, it is possible to use erosion–predicting models RUSLE cheaply and rapidly to interpret the soil erosion process at watershed level. Ginaberet watershed is one of the severely eroded areas in Ethiopia. The purpose of the study was to assess soil erosion and conservation practices on soil physical properties. Revised Universal Soil Loss Equation (RUSLE) under ArcGIS environment was used to predict the spatial soil loss rate. Maps of the five parameters in RUSLE, i.e., rainfall erosivity (R), soil erodibility (K), Land use/cover (C), topography (LS) and conservation practices (P) were overlaid. Based on the RUSLE analysis, the mean annual soil loss potential of the conserved area was 25.59tons/ha/yr and the non–conserved area was 30.92tons/ha/yr.

Keywords: conserved, non–conserved, soil physical property

Introduction

Soil erosion is a great worldwide factor for land degradation that leads to loss of soil properties and reducing soil productivity leading to food insufficiency.1 In the Ethiopian highlands, an annual soil loss reaches 200–300 tons/ha/yr from farm land.2,3 Unfavorable soil physical conditions resulting from erosion can reduce infiltration, encourage crusting, loss of soil fertility, deterioration of soil particle aggregation, degrade soil structure and reduce the effectiveness of root zone thereby reducing soil productivity.4 Soil erosion has a great effect on the change of soil physical properties due to the removal of the top fertile and organic matter–rich soil and the deterioration of soil structure or aggregation.5 Several studies in Ethiopia have revealed that soil erosion has become an alarming problem and the major factor affecting the sustainability of agricultural production.6 Over the last three decades, several types of soil and water conservation (SWC) practices have been experienced on different parts of Ethiopia including Amhara Region and particularly Basonawerana district. On the other hand, the absence of soil conservation practice can lead to accelerating soil erosion and affect the components of physical soil conditions significantly.7 Soil and water conservation practices have the ability to overcome the problem of soil erosion followed by improvement in soil physical properties. Wise use of soil conservation practices that are the decisive tool to maintain the productive potential of the soil help to decreasing the exposure of soil to erosion. Conservation practices can address both the processes of soil erosion and possible solutions to conserve the soil in a sustainable way. The improvement is in soil organic matter content, soil structure and its aggregate stability, water holding capacity, soil bulk density, soil porosity, and its workability.8 Similarly, low soil porosity, gravimetric soil moisture content, clay and silt proportion was revealed in the cultivated land without soil bund as compared with non–conserved land and reversely highest soil bulk density and sand fraction.9 Soil erosion has a great negative effect on the change of soil physical properties including soil structure, soil texture, soil moisture content, and soil bulk density in a long period of time.

Materials and methodology

The study was conducted in Ginaberet watershed, Ethiopia. Geographically, the district lies at 9o50’’N latitude and 39°20’’ E longitude and it covers about 1,208.17. Ginaberet watershed has an altitude range of 2906–3230m (Figure 1). It covers 215.85 ha area of land and it is situated in the Dega agro–climatic zone. Based on Andit Tid (2017) metrological station, the average annual rainfall of the watershed is 1498mm. The average yearly minimum and maximum temperature are 6.2 and 19°C, respectively, while the mean annual temperature is 12.6°C.

Figure 1 Map of the study area.

The mixed crop–livestock system is the predominant farming system in the study. The feed sources are, crop residues, grazing land and cultivated feeds (Tree lucerne and phalaris). The study area has two rainy seasons; kiremt (long season) and belg (short season) which occurs between June and September and between February and April, respectively. During kiremt season, wheat, faba bean, barley and field pea are grown and barley is the major crop during belg season. The dominant soil types in the study area are Eutric cambisols (42%) and Eutric Leptosols (58%). The three conserved land (A, B, and C) were selected through reconnaissance survey. Site A was conserved for 5years; soil and stone bund and with tree lucerne and phalaris grass were constructed (Figure 2, Plate 1 & plate 2). Site B was also conserved for 5years; soil and stone bund and with phalaris grass and terrace were constructed. Site C was conserved for 7years; soil and stone bund and with tree lucerne and phalaris grass and terrace were constructed. The three non–conserved lands (X, Y, and Z) were selected through reconnaissance survey.

Figure 2 Treatment and replication map within the watershed.

Plate 1 Conserved areas within the watershed (Photo by Yishak)

Plate 2 Non-conserved areas within the watershed (Photo by Yishak).

Revised universal soil loss equation (RUSLE)

Estimation of soil erosion has been anticipated by means of Revised Universal Soil Loss Equation (RUSLE). It is a method to estimate the possible soil loss from splash, sheet, and rill erosions.10 The factors used in RUSLE were obtained from the meteorological station, field survey, soil surveys and soil data, DEM and satellite image. The input factors for the RUSLE model in this study were adapted to Ethiopian conditions by Hurni11. RUSLE model is more efficient for a small area because it does not have the capability for routing sediment through channels.12 The flow chart is indicated in Figure 3.

Figure 3 Flowchart showing RUSLE parameters for soil loss prediction.

Mathematically, the RUSLE equation is represented as:

A=R * K * L S * C * P MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaadgeacqGH9aqpcaqGsbGaaeiOaiaabQca caqGGcGaae4saiaabckacaqGQaGaaeiOaiaabYeacaqGGcGaae4uai aabckacaqGQaGaaeiOaiaaboeacaqGGcGaaeOkaiaabckacaqGqbaa aa@4E23@ (1)

Where: A is average annual soil loss (tons/ha/yr), R is rainfall erosivity factor (MJ.mm/h/ha/yr), K is soil erodibility factor (tons/ha/MJ/mm), LS is a topographic factor (dimensionless), C is crop cover factor (dimensionless), and P is soil conservation practice factor (dimensionless).

Rainfall erosivity factor (R–factor)

The R–factor represents the erosive force of a specific rainfall event.13 Hurni11 point out the spatial regression analyses derived an equation from available mean annual rainfall (P) as an alternative to Ethiopian condition. For this study, mean annual rainfall data from the year, 2008 to 2017 were collected from two representative meteorological stations, i.e., Debre Berhan Agricultural Research Center (DARC) and Andit Tid soil conservation research station. The recorded data were first interpolated to generate continuous rainfall data for each grid cell by “Raster Kriging Interpolation” method in the ArcGIS environment thereby calculates the mean rainfall erosivity factor (R–value). R–factor was computed for each meteorological station using the following equation:11

R=8.12+ ( 0.562* P ) MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabkfacqGH9aqpcqGHsislcaaI4aGaaiOl aiaaigdacaaIYaGaey4kaSIaaeiOaOWaaeWaa8aabaqcLbsapeGaaG imaiaac6cacaaI1aGaaGOnaiaaikdacaqGQaGaaeiOaiaabcfaaOGa ayjkaiaawMcaaaaa@4AD4@ (2)

Where; P is the mean annual rainfall in mm; R is erosivity factor. To produce the R–factor map, the interpolated R–factors were converted into a raster format with 20 m resolution and extracted for the studied watershed area.

Soil erodibility (K–factor)

Soil erodibility is strongly related to the physical properties of the soil and plays an important role in soil conservation strategies.14 In this study, soil type is found from soil unit map of the study area from Amhara Region digital soil map developed at a scale of 1: 50,000.15 The soil erodibility factor within the watershed was estimated adapted from Hurni11 (Table 1). The shapefile of the soil unit map of the watershed was changed to a raster with a cell size of 20 m x 20 m and reclassified based on K–values.

Soil type

Estimated K-value

Andosols, Vertisols, and Leptosols

0.15

Cambisols, Phaeozems, Regosols, and Luvisols

0.20

Lixisols, Nitosols, and Alisols

0.25

Fluvisols, and Xerosols

0.30

Table 1 Estimated K-value for some Ethiopian soils

Source Hurni11

Slope and slope length factor (LS–factor)

Slope and slope length (LS–factor) was determined from both the slope length and slope gradient. Digital elevation model (DEM) with 20m spatial resolution and GIS technique were used to generate slope gradient and slope length as referred from Nekhay et al.16 Spatial Analyst Tool Map Algebra Raster Calculator in Arc GIS 10.3.1 environment was used to multiple slope maps and flow accumulation and next calculate and generate the topographic factor map. The flow accumulation was calculated from the Spatial Analyst Hydrology toolset of ArcMap in ArcGIS environment. The slope of the study area in percentage was calculated by the Slope tool in the Spatial Analyst Surface toolset of ArcMap from digital elevation model (DEM) of the watershed.

The equation for topographic factors (LS) by Wischmeier & Smith

LS= ( X 22.1 ) t  (0.065 + 0.045 S + 0.0065  S 2 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabYeacaqGtbGaeyypa0JcdaqadaWdaeaa peWaaSaaa8aabaqcLbsapeGaaeiwaaGcpaqaaKqzGeWdbiaaikdaca aIYaGaaiOlaiaaigdaaaaakiaawIcacaGLPaaal8aadaahaaqcbasa beaajugWa8qacaWG0baaaKqzGeGaaeiOaiaacIcacaaIWaGaaiOlai aaicdacaaI2aGaaGynaiaabckacqGHRaWkcaqGGcGaaGimaiaac6ca caaIWaGaaGinaiaaiwdacaqGGcGaae4uaiaabckacqGHRaWkcaqGGc GaaGimaiaac6cacaaIWaGaaGimaiaaiAdacaaI1aGaaeiOaiaabofa l8aadaahaaqcbasabeaajugWa8qacaaIYaaaaaaa@6167@ (3)

Where X = slope length (m) and S = slope gradient (%)

X=( Flow accumulation * Cell value ) MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabIfacqGH9aqpkmaabmaapaqaaKqzGeWd biaabAeacaqGSbGaae4BaiaabEhacaqGGcGaaeyyaiaabogacaqGJb GaaeyDaiaab2gacaqG1bGaaeiBaiaabggacaqG0bGaaeyAaiaab+ga caqGUbGaaeiOaiaabQcacaqGGcGaae4qaiaabwgacaqGSbGaaeiBai aabckacaqG2bGaaeyyaiaabYgacaqG1bGaaeyzaaGccaGLOaGaayzk aaaaaa@5AF1@ (4)

Flow accumulation is the total number of cells, including non–neighboring cells that drain into a selected cell in the raster–based analysis. Then we substituted the X value on LS

LS= ( Flow accumulation* Cell value 22.1 ) t  ( 0.065 + 0.045 S + 0.0065  S 2 ) MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabYeacaqGtbGaeyypa0JcdaqadaWdaeaa jugib8qacaqGgbGaaeiBaiaab+gacaqG3bGaaeiOaiaabggacaqGJb Gaae4yaiaabwhacaqGTbGaaeyDaiaabYgacaqGHbGaaeiDaiaabMga caqGVbGaaeOBaiaabQcakmaalaaapaqaaKqzGeWdbiaaboeacaqGLb GaaeiBaiaabYgacaqGGcGaaeODaiaabggacaqGSbGaaeyDaiaabwga aOWdaeaajugib8qacaaIYaGaaGOmaiaac6cacaaIXaaaaaGccaGLOa GaayzkaaWcpaWaaWbaaKqaGeqabaqcLbmapeGaamiDaaaajugibiaa bckakmaabmaapaqaaKqzGeWdbiaaicdacaGGUaGaaGimaiaaiAdaca aI1aGaaeiOaiabgUcaRiaabckacaaIWaGaaiOlaiaaicdacaaI0aGa aGynaiaabckacaqGtbGaaeiOaiabgUcaRiaabckacaaIWaGaaiOlai aaicdacaaIWaGaaGOnaiaaiwdacaqGGcGaae4uaSWdamaaCaaajeai beqaaKqzadWdbiaaikdaaaaakiaawIcacaGLPaaaaaa@7CBD@ (5)

Cell size is 20 m and the value of “t “varies from 0.3 –0.5 depending on the slope value (t=0.5 if S ≥ 5%; t=0.4 if 3%≤S<5%; t=0.3 if 1%≤S<3%, t=0.2 if S<1%.17

Land covers (C–factor)

Landsat satellite image was imported into ERDAS 2014 software in an image format for supervised digital image classification for land use and land cover mapping. Ground truth data were used as a reference for accuracy assessment which determines the information value of the resulting data to the user.18 This was obtained through ground verification using Global Position System; next, compares of the classified image to an image which is assumed to be corrected by Google Earth Image, and finaly, interviewing for concerned bodies these have previous information. The corresponding C–value was assigned to each land use class for Ginaberet watershed using the re–class method in Arc GIS as established C–values for Ethiopian condition by Hurni11 presented in Table 2.

Land use

C-factor values

Grazing Land

0.12

Crop Land

0.37

Built Up Areas

0.01

Rocky Area

0.05

Forest Land

0.05

Water Body

0.00

Table 2 C-factor value for different land use management
Source Hurni11

Conservation practice factor (P–factor)

Factor P in the RUSLE is the proportion of soil loss with a specific support practice to the matching loss by up and downslope principles (Table 3). The P–factor for RUSLE was mapped using data from frequent field observations as explained by Tadesse & Abebe,19 According to Atesmachew et al.20 management activities are highly dependent on the slope of the area under consideration. The P–factor for this study was determined using slope and land cover data as suggested by Wischmeier & Smith21. This method categorizes the land cover into agricultural land and other land covers. The established P–value was changed into raster map with a cell size of 20m.

Land use type

Slope (%)

P-value

Cultivated Land

>50

0.33

30-50

0.25

15-30

0.19

8-15

0.14

3-8

0.12

0-3

0.10

Built-up Area

All

1.00

Forest Land

All

1.00

Grazing Land

All

0.90

Rocky Area

All

0.80

Terraces

All

0.60

Table 3 Management practice factor, P-value
Source Wischmeier & Smith21

Soil sampling

Undisturbed soil samples were collected using a core sampler for the determination of bulk density. The two treatments are a conserved area with SWC practice of both mechanical and biological measures and non–conserved (without SWC practice) with three replications for each. Simple random sampling with zigzag manner was used. Besides, soil depth in each specific study site was estimated at three representative points and the average estimated value was used to estimate the permissible soil loss amount.

Soil loss prediction using RUSLE model analysis

The rate of soil loss of soil due to soil erosion was estimated by means of revised universal soil loss equation (RUSLE). The maximum erosion rates recognized in each of the study areas were computed by multiplying maps of the erosion factors in RUSLE presented in equation–1 above. The rate of soil loss was estimated factor tables adapted by Hurni11 for the Ethiopian conditions.

Laboratory analysis

The composite soil samples were collected and dried, mixed well, and passed through a 2mm sieve for soil texture analysis at Debre Berhan Agricultural Research Center soil laboratory. Soil texture was estimated by using the hydrometer method.22 Besides undisturbed core samples were collected for soil bulk density, total porosity, and soil moisture content determination. Soil bulk density was determined as the ratio of oven dry soil mass to its volume after drying the soil samples in an oven at 105°C for about 24hours.23

b= Ms Vb MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabkgacqGH9aqpkmaalaaapaqaaKqzGeWd biaab2eacaqGZbaak8aabaqcLbsapeGaaeOvaiaabkgaaaaaaa@4176@ (7)

Where: rb =soil bulk density (g/cm3), Ms = dry soil mass (g), Vb= volume of the soil sample (cm3)

The particle density of most soils varies from 2.60 to 2.75g/cm3.24 A value of 2.65g/cm3 is generally assumed as averaged for particle density, therefore, this value was used for this study. Total porosity was calculated using equation–8.

Pore space ( % )= d b d *100% MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabcfacaqGVbGaaeOCaiaabwgacaqGGcGa ae4CaiaabchacaqGHbGaae4yaiaabwgacaqGGcGcdaqadaWdaeaaju gib8qacaGGLaaakiaawIcacaGLPaaajugibiabg2da9OWaaSaaa8aa baqcLbsapeGaaeizaiabgkHiTiaabckacaqGIbaak8aabaqcLbsape GaaeizaaaacaqGQaGaaGymaiaaicdacaaIWaGaaeyjaaaa@535A@ (8)

Where: = Particle density (g/cm3); = Bulk density (g/cm3). Soil moisture content was determined by the gravimetric method and is analyzed based on the oven dry basis.25

Soil moisture content ( % )= wet soildry soil dry soil *100 MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaabofacaqGVbGaaeyAaiaabYgacaqGGcGa aeyBaiaab+gacaqGPbGaae4CaiaabshacaqG1bGaaeOCaiaabwgaca qGGcGaae4yaiaab+gacaqGUbGaaeiDaiaabwgacaqGUbGaaeiDaiaa bckakmaabmaapaqaaKqzGeWdbiaabwcaaOGaayjkaiaawMcaaKqzGe Gaeyypa0JcdaWcaaWdaeaajugib8qacaqG3bGaaeyzaiaabshacaqG GcGaae4Caiaab+gacaqGPbGaaeiBaiabgkHiTiaabsgacaqGYbGaae yEaiaabckacaqGZbGaae4BaiaabMgacaqGSbaak8aabaqcLbsapeGa aeizaiaabkhacaqG5bGaaeiOaiaabohacaqGVbGaaeyAaiaabYgaaa GaaeOkaiaaigdacaaIWaGaaGimaaaa@70BF@ (9)

Soil structure was described in terms of shape or type in which crumb, granular, angular blocky, subangular blocky; size (fine, medium, coarse), and grade (distinctness) of the aggregates (weak, moderate, strong). Comparing and contrasting between soil structure conditions between conserved and non–conserved study areas were also done.

Result and discussion

Soil loss estimation using RUSLE model

Rainfall erosivity factor (R)

The long–term mean annual rainfall did not show differences among the specific study sites that is 1498 mm similar to the watershed rainfall. Consequently, the R–factor resulted value was 833 and the spatial distribution of R assumed to be uniform throughout the watershed area (Figure 4). This is accounted for the smaller size of the watershed.26

Figure 4 Map of rainfall erosivity factor (R).

Soil erodibility factor (K)

Two major soil type categories were identified in the study area. After assigning K–values for both soil types, the soil map was reclassified using adopted K–values by Hurni11 with a grid map of 20m x 20m cell size. The value of K–factor was found to be between 0.15 and 0.2 for the study area. Eutric Cambisols and Eutric Leptosols are the major soil types in the watershed with the covering of 42% and 58% of the land to the corresponding K–value of 0.2 and 0.15 (Figure 5). The overall erodibility range of the watershed was very low.27

Figure 5 Soil and soil erodibility factor (K) map.

Topographic factor (LS)

Topographic factor map was generated using the formula in ArcGIS spatial analysis raster calculator function. Figure 6 showed that the slope steepness and the slope length factors in the watershed varied from 0 up to 41.19 to soil erosion. However, the mean LS value of the study watershed was 1.44. The majority slope value was concentrated near to zero implies that topographic factor has less effect on soil erosion in the study area.

Figure 6 Map of topographic factor (LS).

Land cover factor (C)

Cover and management factor (C) for Ginaberet watershed was ranging between 0.01 and 0.37 as indicated in Figure 7. Six land use classes were recognized in the watershed dominated by cropland (176.6ha) followed by grazing land (32.7ha), forestland (5.4ha), rocky area (1.5ha), built up area (0.25ha), and water body (0.031ha). The corresponding land cover factor values were found to be 0.37, 0.12, 0.05, 0.05, 0.01, and 0.00 respectively. The higher C–value (0.37) is an indication that the larger land use (81.7%), i.e., the cropland, contributes more to soil erosion in the watershed (Figure 7). It was similar to the work of Morgan28 and Gizachew.29

Figure 7 Land use and land cover factor (C) map.

Supporting factor (P)

The value of P factor depends upon the measures of soil management, which is associated with the slope of the area. In the study area, most part of the area has been treated with different soil and water conservation practices including soil and stone bund and soil and stone bund with tree lucerne and phalaris, and terrace but not a long period of time (less than fiveyears). The management factor value of each land cover class was determined in the watershed based on the adapted values11 for Ethiopian condition. After Hurni, the cultivated lands are classified into six slope categories and assigned the corresponding P values.30 The result revealed that from the 127.9 ha cultivated land 106.74 ha (59.2%) have a slope range of 0–30% with P value ranging between 0.1 and 0.19 (Figure 8). In terms of P value, another land use (built–up area, forestland, grazing land, rocky area, and terraces) was more contributor to the soil erosion with the area coverage of 87.93 ha (40.7%) within the watershed. It implies P–factor was the most contributors to soil erosion next to rainfall (R) factor Table 4.

Class

tons/ha/yr

Descriptions

Ha

%

I

0-5

None to slight

147.02

68.1

II

15-May

Slight

17.45

8.2

III

15-30

Slight to moderate

13.68

6.3

IV

30-50

Moderate

12.9

5.9

V

50-100

High

11.58

5.4

VI

100-200

Very High

8.74

4

VII

>200

Very High

4.41

2

 

 

Total

215.85

100

Table 4 Soil loss rating and area coverage of Gina beret watershed

Figure 8 Map of management factor (P).

Based on the principles of RUSLE model, the spatial soil erosion rate was computed through the cell by cell multiplication of the six thematic parameters in Raster calculator of ArcGIS spatial analysis function. The result revealed that the mean and the total annual soil loss rate of the study watershed were found to be 25tons/ha/yr and the annual volume of soil loss 1394.44 tons Table 5. This is comparable to the average soil loss rate reported by Hurni11 for the highlands (18tons/ha/yr). The current result also agrees with similar findings in Ethiopia as reported by Tadesse & Abebe19 for the Jabi Tehinan watershed in the northwestern highlands (30.4tons/ha/yr) and in Amare et al.31 for the Wondo Genet watershed of the eastern highlands (26tons/ha/yr). In Koga watershed of the Blue Nile basin the average soil erosion rate was 47. tons/ha/y.32

Soil loss rating

Site A

Site B

Site C

Class

tons/ha/yr

Descriptions

Ha

%

Ha

%

Ha

%

I

0-5

None to slight

3.99

73.2

7.13

69

16.51

76.5

II

15-May

Slight

0.15

2.8

0.42

4.1

1.79

8.3

III

15-30

Slight to moderate

0.11

2

0.43

4.2

1.39

6.4

IV

30-50

Moderate

0.07

1.3

0.78

7.6

1.07

4.9

V

50-100

High

0.31

5.7

0.69

6.7

0.71

3.3

VI

100-200

Very High

0.51

9.4

0.57

5.5

0.11

0.5

VII

>200

Very high

0.29

5.3

0.32

3.1

-

-

Total

5.45

100

10.33

100

21.58

100

 Soil loss rating

Site X

Site Y

Site Z

Class

tons/ha/yr

Descriptions

Ha

%

Ha

%

Ha

%

I

0-5

None to slight

1.69

63.3

13.61

68.6

12.23

70.7

II

15-May

Slight

0.41

15.4

2.61

13.2

0.52

3

III

15-30

Slight to moderate

0.12

4.5

1.47

7.4

0.86

4.9

IV

30-50

Moderate

0.29

10.9

0.86

4.3

0.94

5.4

V

50-100

High

0.05

1.9

0.69

3.5

1.04

6

VI

100-200

Very High

0.07

2.6

0.42

2.1

0.74

4.2

VII

>200

Very high

0.03

1.1

0.23

1.2

0.99

5.8

 

 

Total

2.67

100

19.83

100

17.32

100

Table 5 Soil loss rating and area coverage for each specific conserved and non-conserved area

From the five factors used for analyzing soil erosion using RUSLE model, rainfall factor (R) was the most dominant factor to contribute soil erosion (Figure 4); the result implies that conservation management factor (P) was the dominant factor next to rainfall factor (Figure 8) and the next was C factor (Figure 7). Topographic factor (LS) (Figure 9) and soil erodibility factor (K) (Figure 5) were less contributors to soil erosion respectively. The soil loss rate with respect to the area coverage is presented in Table 6. With soil loss rate range of 0–5tons/ha/yr (none to slight) was covered the large area of the watershed of 147.02 ha (68.1%) and the next 5–15tons/ha/yr (slight) was covered 17.45ha (8.2%) of the watershed. Similar result was reported by Gizachew29 in Zingin watershed.

Treatment

Replication

Estimated soil loss

 Soil depth(cm)

Remark on tolerance limit

 RUSLE (ton/ha/yr)

Conserved

A

52

50-100

not permissible

B

15.59

25-50

not permissible

C

8.56

50-100

Permissible (RUSLE)

Average

25.4

50-100

not permissible

Non- conserved

X

19

50-100

not permissible

Y

30

25-50

not permissible

Z

43.6

25-50

 not permissible

Average

30.86

25-50

not permissible

Table 6 Comparing soil loss with soil loss tolerance limit

Figure 9 The final result of spatial soil loss rate.

Soil loss rating on conserved and non–conserved fields from RUSLE

The soil loss rate in the specific study areas are presented in Figure 4. In conserved areas, the average soil loss rates are found to be 52, 15.59 and 8.56 tons/ha/yr respectively in area A, B, and C. Similarly, the average soil loss rates in the specific non–conserved areas are found to be 19, 30 and 43.6tons/ha/yr respectively in area X, Y, and Z. The overall mean soil loss rating was 25.59tons/ha/yr and 30.92 tons/ha/yr, respectively for conserved and non–conserved areas. That implies a relatively greater amount of soil particle was removed in case of erosion from non–conserved land rather than conserved areas (Table 4) (Figure 10).

Figure 10 Spatial soil loss rate in conserved and non-conserved areas.

The soil loss rate of conserved and non–conserved areas with respect to the area coverage is presented in Table 7. In suite A, B, and C, soil loss rate range of 0–5tons/ha/yr (none to slight) was covered the large area of 73.2%, 69.0%, and 76.5% in conserved areas (Table 7). The next 100–200tons/ha/yr (very high) was covered 9.4% in site A; 30–50tons/ha/yr (moderate) covered 7.6 % in site B and 5–15tons/ha/yr (slight) covered 8.3% in site C in conserved areas. In site X, Y, and Z, soil loss rate range of 0–5tons/ha/yr (none to slight) was covered the large area of 63.3%, 68.6%, and 70.7% in non–conserved areas. The next 5–15tons/ha/yr (slight) was covered 15.4% in site X; 5–15tons/ha/yr (slight) was covered 13.2% in site Y and 50–100tons/ha/yr (high) covered 6.0% in site Z in non–conserved areas within the watershed (Table 5).

Permissible
soil loss (ton/ha/yr)

Soil depth (cm)

Area(ha)

0-25

25-50

50-100

100-150

>150

0-2

97.52

97.52

2-5

22.15

22.15

5-7

14.78

14.78

7-9

13.88

13.88

9-11

 

10.55

10.55

Area under the tolerable soil loss

97.52

22.15

14.78

13.88

10.55

158.88

Table 7 Area coverage of permissible soil loss for each soil depth classes of the study area

These values were higher than the mean value from RUSLE, which were 25.59tons/ha/yr and 30.92 tons/ha/yr in conserved and non–conserved areas. When the result compared to results from other areas, it is not the least or the highest in both conserved and non–conserved. Several results were reported as 23.7tons/ha/yr, 32. Temesgen33 in Geleda watershed, Blue Nile basin, Ethiopia; 9.10tons/ha/yr at Zingin watershed in Awi Zone.29 The estimated average soil loss from croplands in the Ethiopian highlands as a whole was 100 tons/ha/yr by Mati et al.34 The average of 20 tons/ha/yr was estimated by Hurni11 in the highland of Ethiopia and measured amounts of more than 300 tons/ha/yr on specific plots. Hurni3 estimated mean soil loss from cultivated fields as 42tons/ha/yr. A study by Kebede et al.35 in the central rift valley watershed reported a relatively high rate of soil erosion as 45 tons/ha/yr. The average annual soil loss from the test plots in Anjani watershed without conservation measures was reported to 110tons/ha/yr.36 Thus, our estimated soil loss rate was generally realistic on both conserved and non–conserved areas, compared to results from previous studies but greater on non–conserved when compared from conserved areas in this study within the watershed.

Comparing soil loss rate with soil loss tolerance limit

Result from RUSLE model, site C was under permissible (8.56ton/ha/yr) but sites A and B it was greater than the permissible limit and the mean of the three sites also greater than the permissible limit (Table 6). Based on the level of soil loss tolerance limits in Table 1 referenced from soil depth, 158.88 ha falls below the tolerable soil loss limit and the remaining 56.97 ha was found to be higher than the tolerable soil loss limit. Soil loss rate of 9–11 tons/ha/yr with the corresponding area coverage of 10.50ha in the deeper soil range was the maximum tolerable soil loss tolerance. The majority of the watershed area has soil loss tolerance 0–2tons/ha/yr with corresponding area coverage of 97.52ha (Table 7).

Soil physical properties affected by soil erosion and soil conservation

Higher OM resulted from conservation measures and decay of plant residues in the treatments. Similar results were reported by Haweni37 and Solomon et al.30 Contrasting results were also reported.38–40 The soil physical properties in the study areas were not affected by SWC practices as compared to the non–conserved areas. These are attributed to the young age of SWC measures (since 5years). The result depicts that significant changes or effects of SWC on soil characteristics can be achieved only over a long period of conservation practices.37

This soil texture did change as a result of soil erosion and conservation within a short period of time. However, there was a slight numerical variation of sand, silt, and clay fraction between areas with and without conservation. Jamala & Oke41 reported that soil texture is an intrinsic soil property, but intensive cultivation could contribute to the variations in particle size distribution at the surface horizon of cultivated and natural fallow land. The sand fraction was relatively high value in the non–conserved area (27.67 %) than the conserved (12%) numerically. The silt content was higher in the conserved areas (50.67%) than in the non–conserved areas (36%). Similarly, higher mean silt proportion in woodland and fallow land than in cultivated land without soil bunds was reported.9 However, the result of the silt content was not in concurrence with Daniel et al.42 who reported higher silt content in non–conserved areas than conserved lands.

The proportion of clay content in both the conserved and non–conserved areas was below 50% with slightly increment (1%) in conserved than non–conserved. The result implies that this may be due to the direct result of the chemical weathering of silicate minerals from the prevalence sedimentary rocks in the study area. The numerically greater value of mean soil moisture content was observed in conserved areas rather than non–conserved areas although do not show the statistically significant difference. This may be due to the level of conservation and level of soil erosion and lack of full vegetation cover of the land throughout the year.38

The numerically highest mean bulk density (BD) was recorded in the non–conserved field rather than the conserved field. The numerical variation of soil bulk density is expected due to the absence of soil conservation leading to the removal of soil organic matter and weakness in the natural stability of soil aggregates making it susceptible to erosion.38 According to Landon the soil with a mean of 1.5 g/cm3 in the non–conserved land of bulk density ranges with soils showing root restriction which reduces the plant's ability to exploit the plant environment. In this study, 1.55g/cm3 resulted in non–conserved areas which imply the presence of root restriction in the non–conserved study areas.

Slightly higher mean value of soil porosity was recorded in the conserved areas (47.67%) rather than non–conserved (42.8%), but also no statistically significant difference at ( p<0.05 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbdfwBIj xAHbqedmvETj2BSbqefm0B1jxALjhiov2DaerbuLwBLnhiov2DGi1B TfMBaebbnrfifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpe ea0xe9Lq=Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0Firpe peKkFr0xfr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaaeaqbaaGcba qcLbsaqaaaaaaaaaWdbiaadchacqGH8aapcaaIWaGaaiOlaiaaicda caaI1aaaaa@3F64@ ) levels. This in–significance level of difference is attributed to the selected extent of land degradation and level of conservation and selection of planting tree which is best to contribute to the soil organic matter thereby improve soil porosity. The soil physical properties can be altered by the management practices through a longer period of time rather than over a short period. Moreover, accumulation of plant litter produced by the various trees and grasses allows greater infiltration of rainwater thereby preventing the quick loss of soil moisture and increasing the soil water holding capacity in a long period of time.43 Longer time is needed to fully understand the impact of soil conservation on soil physical properties.44 Based on the field observation and the remote sensing data analysis results, noticeable vegetation cover improvement has been observed in the 30years’ period.30 Similarly, Jay et al.45 showed that tillage effect after 22years of treatment imposition not effectively altered soil BD and soil moisture content. In contrast, soil physical properties were affected significantly by soil conservation.9,46 These were related to the young age of the constructed SWC measures, implying that significant changes or effects of SWC on soil characteristics can be achieved only over a long period of conservation.37

Treatments

BD(g/cc)

PPs(%)

SMC(%)

Sand(%)

Silt(%)

Clay(%)

Textural class

Conserved

1.37a

47.67a

20.4a

12a

50.67a

37.3a

Silt clay loam

Non-conserved

1.5a

42.8a

17.8a

27.67a

36a

36.3a

Clay loam

LSD

0.28

9.15

7.47

18.64

15.97

15.11

CV in %

4.64

5.7

11.13

26.7

10.49

11.67

 

Table 8 The mean difference of soil physical properties between conserved and non-conserved areas
Mean values followed by the letter “a” is for conserved and non-conserved land statistically not different at P ≤0.05

A soil with a well–developed structure has a significant proportion of large pores that promotes aeration and accommodates infiltrating water, resulting in reduced erosion due to decreased runoff (Table 8). The soil in site A, B, and C were described as having a “moderately developed, fine, granular structure”; moderately developed, medium, subangular blocky structure, and strongly developed, medium, granular structure respectively in the conserved areas. The soil in site X, Y and Z was described as having a “Moderately developed, medium, subangular blocky structure”; moderately developed, medium, blocky structure and moderately developed, medium, subangular structure in the non–conserved area within the watershed (Table 9). Similar result was reported by Wheaton.47 The granular structure was the result of soil conservation fostering the presence of root in conserved areas (A and C) in Table 9.

Structure

 A

 B

 C

 X

Y

 Z

Shape/type

Granular

Sub angular blocky

Granular

Sub angular blocky

Blocky

Sub angular blocky

Size

Fine

Medium

Medium

Medium

Medium

Medium

Grade

Moderate

Moderate

Strong

Moderate

Moderate

Moderate

Table 9 Soil structure description of soil samples from the two treatments
A, B, and C were replicated from conserved and X, Y and Z were replicated from non-conserved areas within the watershed

Granular or columnar structure may be obtained due to the effect of conservation, while blocky or sub angular blocky structure may be expected in case of soil erosion.48 However, the result indicated that there was no great difference between conserved and non–conserved areas in terms of size (except site A, and C), shape, and grade of the structure. Long period of time is required to see changes in soil structure, whereas in the short term (e.g. fiveyears), the effects of erosion and conservation on structure–forming/disappearing may be small.49

Conclusion

The mean annual soil loss rates of the conserved and non–conserved landscapes using RUSLE were 25.59tons/ha/yr and 30.92tons/ha/yr, respectively. This variation may occur due to the scale effect since runoff and soil loss rates from smaller areas are expected to be large. The result from RUSLE depicts that rainfall factor (R), conservation management factor (P) and land use factor (C) were the most dominant factor to contribute soil erosion.

Soil physical property analysis between the two treatments did not show a statistically significant difference at p ≤0.05 confidence level using LSD. This is due to the inherent property of soil physical properties that need long–term (greater than 5–7years) erosion or conservation duration to change significantly. Generally, irrespective of the numerical variation, soil loss rates in both methods coupled with farmers’ real perception has confirmed the soil loss in both treatments cannot be tolerated. Therefore, critical effort to reduce soil erosion in the study watershed is mandatory. Moreover, researchers should focus on the extent of years of conservation and erosion that can significantly affect the changes in the physical properties of soils.50–57

Acknowledgements

None.

Conflict of interest

Authors declare there is no conflict of interest.

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